Read in SF trees data

sf_trees <- read_csv(here("data", 
                          "sf_trees", 
                          "sf_trees.csv"))
## Parsed with column specification:
## cols(
##   tree_id = col_double(),
##   legal_status = col_character(),
##   species = col_character(),
##   address = col_character(),
##   site_order = col_double(),
##   site_info = col_character(),
##   caretaker = col_character(),
##   date = col_date(format = ""),
##   dbh = col_double(),
##   plot_size = col_character(),
##   latitude = col_double(),
##   longitude = col_double()
## )

Basic wrangling reminders

Refresh some skills for data wrangling and summary statistics using functions in the ‘dplyr’ package.

Find the top 5 highest observations of trees by “legal_status”, do some wrangling, and make a graph.

top_5_status <- sf_trees %>% 
  count(legal_status) %>% 
  drop_na(legal_status) %>% 
  rename(tree_count = n) %>% 
  relocate(tree_count) %>% 
  slice_max(tree_count, 
            n = 5)

Make a graph of those top 5 observations by legal status.

ggplot(data = top_5_status, 
       aes(x = fct_reorder(legal_status, 
                           tree_count), 
           y = tree_count)) + 
  geom_col() + 
  labs(x = "Legal Status", 
       y = "Tree Count") + 
  coord_flip() + 
  theme_minimal()

A few more data wrangling refresher examples

Only want to keep observations (rows) for Blackwood Acacia trees.

blackwood_acacia <- sf_trees %>% 
  filter(str_detect(species, 
                    "Blackwood Acacia")) %>% 
  select(legal_status, 
         date, 
         latitude, 
         longitude)

ggplot(data = blackwood_acacia, 
       aes(x = longitude, 
           y = latitude)) + 
  geom_point()
## Warning: Removed 27 rows containing missing values (geom_point).

‘tidyr::separate()’ and ‘unite()’ functions

Useful for combining or separating columns.

sf_trees_sep <- sf_trees %>% 
  separate(species, 
           into = c("spp_scientific", 
                    "spp_common"), 
           sep = "::")

Example: ‘tidyr::unite()’.

sf_trees_unite <- sf_trees %>% 
  unite("id_status", 
        tree_id:legal_status, 
        sep = "_cool!_")

Make some actual maps of blackwood acacia trees in SF

‘st_as_sf()’ to convert latitude and longitude to spatial coordinates.

blackwood_acacia_sp <- blackwood_acacia %>% 
  drop_na(longitude, 
          latitude) %>% 
  st_as_sf(coords = c("longitude", 
                      "latitude"))

st_crs(blackwood_acacia_sp) = 4326

ggplot(data = blackwood_acacia_sp) + 
  geom_sf(color = "darkgreen")

Read in SF roads shapefile.

sf_map <- read_sf(here("data", 
                       "sf_map", 
                       "tl_2017_06075_roads.shp"))

st_transform(sf_map, 
             4326)
## Simple feature collection with 4087 features and 4 fields
## geometry type:  LINESTRING
## dimension:      XY
## bbox:           xmin: -122.5136 ymin: 37.70813 xmax: -122.3496 ymax: 37.83213
## CRS:            EPSG:4326
## # A tibble: 4,087 x 5
##    LINEARID   FULLNAME     RTTYP MTFCC                                  geometry
##  * <chr>      <chr>        <chr> <chr>                          <LINESTRING [°]>
##  1 110498938… Hwy 101 S O… M     S1400 (-122.4041 37.74842, -122.404 37.7483, -…
##  2 110498937… Hwy 101 N o… M     S1400 (-122.4744 37.80691, -122.4746 37.80684,…
##  3 110366022… Ludlow Aly … M     S1780 (-122.4596 37.73853, -122.4596 37.73845,…
##  4 110608181… Mission Bay… M     S1400 (-122.3946 37.77082, -122.3929 37.77092,…
##  5 110366689… 25th Ave N   M     S1400 (-122.4858 37.78953, -122.4855 37.78935,…
##  6 110368970… Willard N    M     S1400 (-122.457 37.77817, -122.457 37.77812, -…
##  7 110368970… 25th Ave N   M     S1400 (-122.4858 37.78953, -122.4858 37.78952,…
##  8 110498933… Avenue N     M     S1400 (-122.3643 37.81947, -122.3638 37.82064,…
##  9 110368970… 25th Ave N   M     S1400  (-122.4854 37.78982, -122.4858 37.78953)
## 10 110367749… Mission Bay… M     S1400 (-122.3865 37.77086, -122.3878 37.77076,…
## # … with 4,077 more rows
ggplot(data = sf_map) + 
  geom_sf()

Combine blackwood acacia trees observations and SF roads map.

ggplot() + 
  geom_sf(data = sf_map, 
          size = 0.1, 
          color = "darkgrey") + 
  geom_sf(data = blackwood_acacia_sp, 
          color = "red", 
          size = 0.5) + 
  theme_void()

Now an interactive map.

tmap_mode("view")
## tmap mode set to interactive viewing
tm_shape(blackwood_acacia_sp) + 
  tm_dots()

END